Tese
Inferência bayesiana na detecção de potenciais evocados auditivos em regime permanente
Fecha
2020-05-15Autor
Matheus Wanderley Romão
Institución
Resumen
Auditory steady-state responses (ASSR) are used in clinical practice to assess hearing
thresholds. Objective response detection techniques, in the frequency domain, have been
developed to identify the ASSR based on the classical Neyman-Pearson approach. These
detectors are considered optimal for a given level of significance to either accept or reject
the null hypothesis H0 (no response). On the other hand, the Bayesian approach allows
the inclusion of prior information for H0 and H1 (response) hypotheses in the model
and enables updating of this information with the posterior knowledge. This approach,
however, has not been explored with respect to objective ASSR detection techniques.
This enables the exploration of new paradigms, which may contribute to this field of
study, especially in terms of the time required for response detection. The aim of this
work is to investigate the bayesian approach in the development of detectors to better
identify the ASSR. Detection algorithms for these potentials were implemented based on
the Spectral F test (SFT) and the magnitude squared coherence (MSC), both for the
classical and bayesian approaches. Theoretical assessment and Monte Carlo simulations
were performed to evaluate the performances of both detectors as a function of the signalto-noise ratio (SNR). To enable the application in ASSR data, a study was carried out on
the SNR estimation. Then, the two detectors were applied to ASSR recordings of nine
normal-hearing subjects stimulated by amplitude-modulated tones of various intensities.
Simulation results showed that the SFT and the MSC performed similarly. Among the
scenarios analyzed, the most promising case was the bayesian approach in which the lowest
possible values for the a priori probability was selected for the H0, allowing detection
at low SNR levels. The bayesian detector worst performance occurred when the a priori
probabilities for both hypotheses were equal (reaching ideal performance at SNR levels
similar to the Neyman-Pearson detector). Similar results were found in the ASSR data and
also showed that higher stimulus intensity led to better performance and faster detection
due to improvements in the SNR. It is concluded that the Bayesian detector can be
implemented in many ways, given the possibility of arbitrary choices for assigning costs
to the decisions that can be made and for the probabilities of occurrence of each of the
competing hypotheses. It was found that the strategy of choosing the a priori probabilities
has a great influence on the performance that will be achieved by the detector, which in a
real application can contribute to reducing the time needed to make a decision.